Directing exploratory search: reinforcement learning from user interactions with keywords

D. Glowacka, Tuukka Ruotsalo, Ksenia Konyushkova, Kumaripaba Athukorala, Samuel Kaski, Giulio Jacucci
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引用次数: 116

Abstract

Techniques for both exploratory and known item search tend to direct only to more specific subtopics or individual documents, as opposed to allowing directing the exploration of the information space. We present an interactive information retrieval system that combines Reinforcement Learning techniques along with a novel user interface design to allow active engagement of users in directing the search. Users can directly manipulate document features (keywords) to indicate their interests and Reinforcement Learning is used to model the user by allowing the system to trade off between exploration and exploitation. This gives users the opportunity to more effectively direct their search nearer, further and following a direction. A task-based user study conducted with 20 participants comparing our system to a traditional query-based baseline indicates that our system significantly improves the effectiveness of information retrieval by providing access to more relevant and novel information without having to spend more time acquiring the information.
指导探索性搜索:从用户与关键字的交互中强化学习
探索性和已知条目搜索的技术倾向于只指向更具体的子主题或单个文档,而不允许对信息空间进行定向探索。我们提出了一个交互式信息检索系统,该系统结合了强化学习技术和新颖的用户界面设计,允许用户积极参与指导搜索。用户可以直接操纵文档特征(关键词)来表明他们的兴趣,强化学习通过允许系统在探索和利用之间进行权衡来对用户进行建模。这让用户有机会更有效地引导他们的搜索更近,更远,并遵循一个方向。一项由20名参与者参与的基于任务的用户研究将我们的系统与传统的基于查询的基线进行了比较,结果表明,我们的系统通过提供更多相关和新颖的信息而无需花费更多时间获取信息,显著提高了信息检索的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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